4.0 Article

Using color-only vegetation indexes to remove vegetation from otherwise mostly mono-material point clouds

期刊

ACTA MONTANISTICA SLOVACA
卷 27, 期 4, 页码 1089-1101

出版社

BERG FAC TECHNICAL UNIV KOSICE
DOI: 10.46544/AMS.v27i4.20

关键词

Point cloud; vegetation index; vegetation filtering

资金

  1. Grant Agency of CTU in Prague [SGS21/053/OHK1/1T/11]
  2. Technology Agency of the Czech Republic [CK03000168]

向作者/读者索取更多资源

Point clouds are commonly used to describe objects in engineering disciplines. This paper presents a new method of filtering point clouds using the visible spectrum color principle and RGB system colors to determine vegetation indexes. The method simplifies the operator's work through means clustering and can be implemented in the CloudCompare software.
Point clouds are now a standard way of describing objects in many engineering disciplines, whether they are man-made objects such as structures, buildings, or various types of structures. Commonly used methods of acquiring such data include ground, UAV, or even aerial photogrammetry, followed by terrestrial, UAV, and aerial scanning. After measurement (by the scanner) or calculation (from photogrammetry), the point cloud goes through extensive processing that essentially transforms the unordered mass of points into a usable data set. One of the important steps is removing points representing obstructing objects and features, including vegetation in particular. Here, many filtering methods based on different principles are available and suitable for application to different scenes. This paper presents a new method of filtering point clouds based on the visible spectrum color principle using vegetation indexes determined from RGB system colors only. Since each sensor has to some extent, an individual interpretation of the colors, it cannot be assumed to determine specific boundaries of what is and is no longer vegetation. Therefore, it was proposed to use means clustering to simplify the operator's work. The method was also designed in such a way that the entire evaluation could be implemented in the freely available CloudCompare software. The procedure was tested on three different sites with different terrain and vegetation characteristics showing, which demonstrated the applicability of this method to data where the color information (green) uniquely identifies vegetation. The selected vegetation filters ExG, ExR, ExB, and ExGr were tested, where ExG was the best. K-means clustering helps an operator to distinguish more easily between vegetation and the rest of the point cloud without compromising the quality of the result. The method is practically implementable using the freely downloadable and usable CloudCompare software.

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